基于深度神经网络策略的实用青光眼检测

M. S. Eswari, S. Balamurali
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引用次数: 0

摘要

青光眼是一组疾病,其中连接眼睛和大脑的神经被破坏,通常是由于眼压过高。更为普遍的青光眼疾病通常表现为逐渐的视力损害。这种由青光眼引起的视力丧失被称为开角型青光眼,虽然这种角型青光眼并不常见,但它是一种临床危象,有一些症状,如眼睛疼痛和焦虑,以及急性视力障碍。本文提出了一种新的深度学习机制,即深度神经分类网络(deep Neural Classification Network, DNCN),用于青光眼疾病的深度识别。该方法通过对光学相干断层扫描(OCT)和视网膜眼底图像两种形式因素的分析,有效地识别青光眼疾病。提出的DNCN模型基于预处理、特征提取、滤波和分类等不同的处理过程对视网膜图像进行处理,保证了结果的正确率为97.3%,错误率为0.27%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Pragmatic Glaucoma Detection Based On Deep Neural Network Strategy
Glaucoma is a group of diseases in which the nerve linking the eyes to the brain becomes destroyed, typically as a result of excessive intraocular pressure. The much more prevalent type of glaucoma diseases frequently manifests itself through gradual eyesight impairment. This kind of visual loss due to glaucoma is called open angle glaucoma and although this kind of angular glaucoma is uncommon, it is a clinical crisis with some indications such as eye pain and anxiety as well as acute vision disruption. In this paper, a new deep learning mechanism is used to identify the glaucoma disease in an intense manner, which is called Deep Neural Classification Network (DNCN). This proposed approach identifies the glaucoma disease efficiently by analyzing the retinal images with respect to two form factors such as Optical Coherence Tomography (OCT) and Retinal Fundus Images. The proposed DNCN model processes the retinal image based on the different processing procedures such as pre-processing, feature extraction, filtration and classification, in which it assures the accuracy ratio of 97.3% in outcome with the error rate of 0.27%.
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